The following publications are possibly variants of this publication:
- Fault diagnosis of rotating machinery based on time-frequency image feature extractionShiyi ZHANG, Laigang Zhang, Teng Zhao, Mahmoud Mohamed Selim. jifs, 39(4):5193-5200, 2020. [doi]
- Fault diagnosis for machinery based on feature extraction and general regression neural networkHaiping Li, Jianmin Zhao, Xianglong Ni, Xinghui Zhang. saem, 9(5):1034-1046, 2018. [doi]
- Multi-feature fusion for fault diagnosis of rotating machinery based on convolutional neural networkShaoqing Liu, Zhenshan Ji, Yong Wang, Zuchao Zhang, Zhanghou Xu, Chaohao Kan, Ke Jin. comcom, 173:160-169, 2021. [doi]
- A Novel Fault Diagnosis Method for Rotating Machinery Based on a Convolutional Neural NetworkSheng Guo, Tao Yang, Wei Gao, Chen Zhang. sensors, 18(5):1429, 2018. [doi]
- Imbalanced fault diagnosis of rotating machinery via multi-domain feature extraction and cost-sensitive learningQifa Xu, Shixiang Lu, Weiyin Jia, Cuixia Jiang. jim, 31(6):1467-1481, 2020. [doi]